TY - JOUR
T1 - A signal detection theoretic approach for estimating metacognitive sensitivity from confidence ratings
AU - Maniscalco, Brian
AU - Lau, Hakwan
PY - 2012/3
Y1 - 2012/3
N2 - How should we measure metacognitive (" type 2" ) sensitivity, i.e. the efficacy with which observers' confidence ratings discriminate between their own correct and incorrect stimulus classifications? We argue that currently available methods are inadequate because they are influenced by factors such as response bias and type 1 sensitivity (i.e. ability to distinguish stimuli). Extending the signal detection theory (SDT) approach of . Galvin, Podd, Drga, and Whitmore (2003), we propose a method of measuring type 2 sensitivity that is free from these confounds. We call our measure meta- d', which reflects how much information, in signal-to-noise units, is available for metacognition. Applying this novel method in a 2-interval forced choice visual task, we found that subjects' metacognitive sensitivity was close to, but significantly below, optimality. We discuss the theoretical implications of these findings, as well as related computational issues of the method. We also provide free Matlab code for implementing the analysis.
AB - How should we measure metacognitive (" type 2" ) sensitivity, i.e. the efficacy with which observers' confidence ratings discriminate between their own correct and incorrect stimulus classifications? We argue that currently available methods are inadequate because they are influenced by factors such as response bias and type 1 sensitivity (i.e. ability to distinguish stimuli). Extending the signal detection theory (SDT) approach of . Galvin, Podd, Drga, and Whitmore (2003), we propose a method of measuring type 2 sensitivity that is free from these confounds. We call our measure meta- d', which reflects how much information, in signal-to-noise units, is available for metacognition. Applying this novel method in a 2-interval forced choice visual task, we found that subjects' metacognitive sensitivity was close to, but significantly below, optimality. We discuss the theoretical implications of these findings, as well as related computational issues of the method. We also provide free Matlab code for implementing the analysis.
KW - Confidence rating
KW - Metacognition
KW - Signal detection theory
KW - Type 2 sensitivity
UR - https://www.scopus.com/pages/publications/84857504962
U2 - 10.1016/j.concog.2011.09.021
DO - 10.1016/j.concog.2011.09.021
M3 - Article
C2 - 22071269
AN - SCOPUS:84857504962
SN - 1053-8100
VL - 21
SP - 422
EP - 430
JO - Consciousness and Cognition
JF - Consciousness and Cognition
IS - 1
ER -